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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Shadow detection: A survey and comparative evaluation of recent methods
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Shadow detection: A survey and comparative evaluation of recent methods

机译:阴影检测:最新方法的调查和比较评估

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摘要

This paper presents a survey and a comparative evaluation of recent techniques for moving cast shadow detection. We identify shadow removal as a critical step for improving object detection and tracking. The survey covers methods published during the last decade, and places them in a feature-based taxonomy comprised of four categories: chromacity, physical, geometry and textures. A selection of prominent methods across the categories is compared in terms of quantitative performance measures (shadow detection and discrimination rates, colour desaturation) as well as qualitative observations. Furthermore, we propose the use of tracking performance as an unbiased approach for determining the practical usefulness of shadow detection methods. The evaluation indicates that all shadow detection approaches make different contributions and all have individual strength and weaknesses. Out of the selected methods, the geometry-based technique has strict assumptions and is not generalisable to various environments, but it is a straightforward choice when the objects of interest are easy to model and their shadows have different orientation. The chromacity based method is the fastest to implement and run, but it is sensitive to noise and less effective in low saturated scenes. The physical method improves upon the accuracy of the chromacity method by adapting to local shadow models, but fails when the spectral properties of the objects are similar to that of the background. The small-region texture based method is especially robust for pixels whose neighbourhood is textured, but may take longer to implement and is the most computationally expensive. The large-region texture based method produces the most accurate results, but has a significant computational load due to its multiple processing steps.
机译:本文介绍了对移动投影检测的最新技术的调查和比较评估。我们将阴影去除视为改善物体检测和跟踪的关键步骤。该调查涵盖了过去十年中发布的方法,并将它们置于基于特征的分类法中,该分类法包括四个类别:色度,物理,几何和纹理。根据定量性能指标(阴影检测和辨别率,颜色不饱和度)以及定性观察,比较了各个类别中精选的主要方法。此外,我们建议使用跟踪性能作为确定阴影检测方法实际实用性的一种无偏方法。评估表明,所有阴影检测方法都做出了不同的贡献,并且都有各自的长处和短处。在选定的方法中,基于几何的技术具有严格的假设并且不能在各种环境中通用,但是当感兴趣的对象易于建模并且其阴影具有不同的方向时,这是一个直接的选择。基于色度的方法是实施和运行最快的方法,但对噪声敏感,在低饱和场景中效果较差。物理方法通过适应局部阴影模型提高了色度方法的准确性,但是当对象的光谱特性与背景的光谱特性相似时失败。基于小区域纹理的方法对于邻域已纹理化的像素特别健壮,但实现起来可能需要更长的时间,并且在计算上最昂贵。基于大区域纹理的方法产生最精确的结果,但是由于其多个处理步骤而具有显着的计算负荷。

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